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Prepaing the {isocubes} pkg for release!
— mikefc (@coolbutuseless) June 20, 2022
Testing out some drawing options (e.g. turning off outlines) and ways of specifying face colouring i.e. each face colour can be specified independently
This letter 'R' is from a bitmap font in {bdftools}#RStats pic.twitter.com/gCYL8iJRp1
Comes in around 1:10:00#Python #Roblox #IoT #IIoT #Azure #PyTorch #Cython #RStats #DotNet #Web3 #Java #BTSV #ADA #CSharp #Flutter #SQL #TensorFlow #HTML #JavaScript #ReactJS #Serverless #Linux #Security #NFT #AI #CSS #WordPress @UCProdigy https://t.co/t6h6MNsxvz @Meade916
— 𝓜𝕖𝕟𝕤𝕥𝕣𝕒𝕦𝕝 𝓜𝕒𝕥𝕙𝕖𝕣𝕤 (@MenstraulM) June 20, 2022
Is this a java script?
— ƑΛrΛz'S ᗯorℓd (@farazyaseen55) June 20, 2022
Huh! Today's work.#MachineLearning #DataScience #Cybersecurity #BigData #Analytics #AI #IIoT #Python #RStats #TensorFlow #JavaScript #ReactJS #CloudComputing #Serverless #DataScientist #Linux #Programming #Coding #100DaysofCode #NodeJS #golang #NLP #IoT pic.twitter.com/xWweRuGUNx
| User | Engagement/Tweet |
|---|---|
| @CloarecJulien | 4182.25 |
| @v_matzek | 2453.00 |
| @TheToadLady | 1602.50 |
| @kiramhoffman | 1138.00 |
| @OwenOzier | 959.00 |
| @kaymwilliamson | 943.00 |
| @_johntlovell | 936.00 |
| @SebastienPolis | 875.00 |
| @DataMovesHer | 814.50 |
| @TechAmazing | 797.00 |
Where Engagement is RT * 2 + Favourite
Relationships in the graph describe replies and quote retweets from the top tweeters that also have the hashtag.
---
title: "#rstats Twitter Explorer"
output:
flexdashboard::flex_dashboard:
orientation: rows
vertical_layout: scroll
source_code: embed
theme:
version: 4
bootswatch: yeti
css: styles/main.css
---
```{r load_proj, include=FALSE}
devtools::load_all()
```
```{r load_packages, include=FALSE, cache=TRUE}
library(flexdashboard)
library(rtweet)
library(dplyr)
library(stringr)
library(tidytext)
library(lubridate)
library(echarts4r)
library(DT)
rstats_tweets <- read_twitter_csv("data/rstats_tweets.csv.gz") %>%
mutate(created_at = as_datetime(created_at))
```
```{r time_data, include=FALSE, cache=TRUE}
count_timeseries <- rstats_tweets %>%
ts_data(by = "hours")
tweets_week <- rstats_tweets %>%
filter(date(created_at) %within% interval(floor_date(today(), "week"), today()))
tweets_today <- rstats_tweets %>%
filter(date(created_at) == today())
```
```{r numbers, include=FALSE, cache=TRUE}
number_of_unique_tweets <- get_unique_value(rstats_tweets, text)
number_of_unique_tweets_today <-
get_unique_value(tweets_today, text)
number_of_tweeters_today <- get_unique_value(tweets_today, user_id)
number_of_likes <- rstats_tweets %>%
pull(favorite_count) %>%
sum()
```
```{r rankings_data, include=FALSE, cache=TRUE}
top_tweeters <- rstats_tweets %>%
group_by(user_id, screen_name, profile_url, profile_image_url) %>%
summarize(engagement = (sum(retweet_count) * 2 + sum(favorite_count)) / n()) %>%
ungroup() %>%
slice_max(engagement, n = 10, with_ties = FALSE)
top_tweeters_format <- top_tweeters %>%
mutate(
profile_url = stringr::str_glue("https://twitter.com/{screen_name}"),
screen_name = stringr::str_glue('@{screen_name}'),
engagement = formattable::color_bar("#a3c1e0", formattable::proportion)(engagement)
) %>%
select(screen_name, engagement)
top_hashtags <- rstats_tweets %>%
tidyr::separate_rows(hashtags, sep = " ") %>%
count(hashtags) %>%
filter(!(hashtags %in% c("rstats", "RStats"))) %>%
slice_max(n, n = 10, with_ties = FALSE) %>%
mutate(
number = formattable::color_bar("plum", formattable::proportion)(n),
hashtag = stringr::str_glue(
'#{hashtags}'
),
) %>%
select(hashtag, number)
word_banlist <- c("t.co", "https", "rstats")
top_words <- rstats_tweets %>%
select(text) %>%
unnest_tokens(word, text) %>%
anti_join(stop_words) %>%
filter(!(word %in% word_banlist)) %>%
filter(nchar(word) >= 4) %>%
count(word, sort = TRUE) %>%
slice_max(n, n = 10, with_ties = FALSE) %>%
select(word, n)
top_co_hashtags <- rstats_tweets %>%
unnest_tokens(bigram, hashtags, token = "ngrams", n = 2) %>%
tidyr::separate(bigram, c("word1", "word2"), sep = " ") %>%
filter(!word1 %in% c(stop_words$word, word_banlist)) %>%
filter(!word2 %in% c(stop_words$word, word_banlist)) %>%
count(word1, word2, sort = TRUE) %>%
filter(!is.na(word1) & !is.na(word2)) %>%
slice_max(n, n = 100, with_ties = FALSE)
top_locations <- rstats_tweets %>%
filter(!is.na(location) & location != "#rstats") %>%
distinct(user_id, .keep_all = TRUE) %>%
mutate(location = str_replace_all(location, "London$", "London, England")) %>%
count(location) %>%
slice_max(n, n = 10, with_ties = FALSE)
```
Home {data-icon="ion-home"}
====
Row
-----------------------------------------------------------------------
### Tweets Today
```{r tweets_today}
valueBox(number_of_unique_tweets_today, icon = "fa-comment-alt", color = "plum")
```
### Tweeters Today
```{r tweeters_today}
valueBox(number_of_tweeters_today, icon = "fa-user", color = "peachpuff")
```
### #rstats Likes
```{r likes}
valueBox(number_of_likes, icon = "fa-heart", color = "palevioletred")
```
### #rstats Tweets
```{r unique_tweets}
valueBox(number_of_unique_tweets, icon = "fa-comments", color = "mediumorchid")
```
Row {.tabset .tabset-fade}
-----------------------------------------------------------------------
### Tweet volume
```{r tweet_volume}
plot_tweet_volume(count_timeseries)
```
### Tweets by Hour of Day
```{r tweets_by_hour}
plot_tweet_by_hour(rstats_tweets)
```
Row
-----------------------------------------------------------------------
### 💗 Most Liked Tweet Today {.tweet-box}
```{r most_liked}
most_liked_url <- tweets_today %>%
slice_max(favorite_count, with_ties = FALSE)
get_tweet_embed(most_liked_url$screen_name, most_liked_url$status_id)
```
### ✨ Most Retweeted Tweet Today {.tweet-box}
```{r most_rt}
most_retweeted <- tweets_today %>%
slice_max(retweet_count, with_ties = FALSE)
get_tweet_embed(most_retweeted$screen_name, most_retweeted$status_id)
```
### 🎉 Most Recent {.tweet-box}
```{r most_recent}
most_recent <- tweets_today %>%
slice_max(created_at, with_ties=FALSE)
get_tweet_embed(most_recent$screen_name, most_recent$status_id)
```
Rankings {data-icon="ion-arrow-graph-up-right"}
=========
Row
-----------------------------------------------------------------------
### Top Tweeters
```{r top_tweeters}
top_tweeters_format %>%
knitr::kable(
format = "html",
escape = FALSE,
align = "cll",
col.names = c("User", "Engagement/Tweet "),
table.attr = 'class = "table"'
)
```
Where Engagement is `RT * 2 + Favourite`
### Network of top tweeters
Relationships in the graph describe replies and quote retweets from the top tweeters
that also have the hashtag.
```{r top_tweeters_net}
edgelist <-
network_data(rstats_tweets %>% unflatten(), "reply,quote")
nodelist <- attr(edgelist, "idsn") %>%
bind_cols()
top_edges <- edgelist %>%
filter((from %in% top_tweeters$user_id) |
(to %in% top_tweeters$user_id))
top_nodes <- nodelist %>%
filter((id %in% top_edges$from) | (id %in% top_edges$to)) %>%
mutate(is_top = ifelse((id %in% top_tweeters$user_id), "yes", "no"),
size = 10)
e_charts() %>%
e_graph() %>%
e_graph_nodes(top_nodes, id, sn, size, category = is_top, legend = FALSE) %>%
e_graph_edges(top_edges, from, to) %>%
e_tooltip()
```
Row
-----------------------------------------------------------------------
### Top Words
```{r top_words}
top_words %>%
e_charts(word) %>%
e_bar(n, legend = FALSE) %>%
e_x_axis(
axisLabel = list(
interval = 0L,
rotate = 30
)
) %>%
e_toolbox_feature("saveAsImage") %>%
e_axis_labels(y = "Number of occurrences")
```
### Top Locations
```{r top_locations}
top_locations %>%
mutate(location = str_wrap(location, 9)) %>%
e_charts(location) %>%
e_bar(n, legend = FALSE) %>%
e_x_axis(
axisLabel = list(
interval = 0L,
rotate = 30
)
) %>%
e_toolbox_feature("saveAsImage") %>%
e_axis_labels(y = "Number of users from location")
```
Row
-----------------------------------------------------------------------
### Top Hashtags
```{r top_hashtags}
top_hashtags %>%
knitr::kable(
format = "html",
escape = FALSE,
align = "cll",
col.names = c("Hashtag", "Count"),
table.attr = 'class = "table"'
)
```
Excluding `#rstats` and similar variations
### Common co-occuring hashtags
Hashtags that occur together, grouped by community detection
```{r co_hashtags}
top_co_hash_nodes <- tibble(
nodes = c(top_co_hashtags$word1, top_co_hashtags$word2)
) %>%
distinct()
e_chart() %>%
e_graph() %>%
e_graph_nodes(top_co_hash_nodes, nodes, nodes, nodes) %>%
e_graph_edges(top_co_hashtags, word1, word2) %>%
e_modularity()
```
Data {data-icon="ion-stats-bars"}
==============
### Tweets in the current week {.datatable-container}
```{r datatable}
tweets_week %>%
select(
status_url,
created_at,
screen_name,
text,
retweet_count,
favorite_count,
mentions_screen_name
) %>%
mutate(
status_url = stringr::str_glue("On Twitter")
) %>%
datatable(
.,
extensions = "Buttons",
rownames = FALSE,
escape = FALSE,
colnames = c("Timestamp", "User", "Tweet", "RT", "Fav", "Mentioned"),
filter = 'top',
options = list(
columnDefs = list(list(
targets = 0, searchable = FALSE
)),
lengthMenu = c(5, 10, 25, 50, 100),
pageLength = 10,
scrollY = 600,
scroller = TRUE,
dom = '<"d-flex justify-content-between"lBf>rtip',
buttons = list('copy', list(
extend = 'collection',
buttons = c('csv', 'excel'),
text = 'Download'
))
)
)
```